Ming Gong
2020
Enhancing Answer Boundary Detection for Multilingual Machine Reading Comprehension
Fei Yuan
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Linjun Shou
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Xuanyu Bai
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Ming Gong
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Yaobo Liang
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Nan Duan
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Yan Fu
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Daxin Jiang
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics
Multilingual pre-trained models could leverage the training data from a rich source language (such as English) to improve performance on low resource languages. However, the transfer quality for multilingual Machine Reading Comprehension (MRC) is significantly worse than sentence classification tasks mainly due to the requirement of MRC to detect the word level answer boundary. In this paper, we propose two auxiliary tasks in the fine-tuning stage to create additional phrase boundary supervision: (1) A mixed MRC task, which translates the question or passage to other languages and builds cross-lingual question-passage pairs; (2) A language-agnostic knowledge masking task by leveraging knowledge phrases mined from web. Besides, extensive experiments on two cross-lingual MRC datasets show the effectiveness of our proposed approach.
LogicalFactChecker: Leveraging Logical Operations for Fact Checking with Graph Module Network
Wanjun Zhong
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Duyu Tang
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Zhangyin Feng
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Nan Duan
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Ming Zhou
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Ming Gong
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Linjun Shou
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Daxin Jiang
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Jiahai Wang
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Jian Yin
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics
Verifying the correctness of a textual statement requires not only semantic reasoning about the meaning of words, but also symbolic reasoning about logical operations like count, superlative, aggregation, etc. In this work, we propose LogicalFactChecker, a neural network approach capable of leveraging logical operations for fact checking. It achieves the state-of-the-art performance on TABFACT, a large-scale, benchmark dataset built for verifying a textual statement with semi-structured tables. This is achieved by a graph module network built upon the Transformer-based architecture. With a textual statement and a table as the input, LogicalFactChecker automatically derives a program (a.k.a. logical form) of the statement in a semantic parsing manner. A heterogeneous graph is then constructed to capture not only the structures of the table and the program, but also the connections between inputs with different modalities. Such a graph reveals the related contexts of each word in the statement, the table and the program. The graph is used to obtain graph-enhanced contextual representations of words in Transformer-based architecture. After that, a program-driven module network is further introduced to exploit the hierarchical structure of the program, where semantic compositionality is dynamically modeled along the program structure with a set of function-specific modules. Ablation experiments suggest that both the heterogeneous graph and the module network are important to obtain strong results.
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Co-authors
- Linjun Shou 2
- Nan Duan 2
- Daxin Jiang 2
- Fei Yuan 1
- Xuanyu Bai 1
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Venues
- ACL2